Applying an extended guided local search to the quadratic assignment problem

Applying an extended guided local search to the quadratic assignment problem

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Article ID: iaor20033298
Country: Netherlands
Volume: 118
Issue: 1
Start Page Number: 121
End Page Number: 135
Publication Date: Feb 2003
Journal: Annals of Operations Research
Authors: , ,
Keywords: programming: quadratic
Abstract:

In this paper, we show how an extended Guided Local Search (GLS) can be applied to the Quadratic Assignment Problem (QAP). GLS is a general, penalty-based meta-heuristic, which sits on top of local search algorithms, to help guide them out of local minima. We present empirical results of applying several extended versions of GLS to the QAP, and show that these extensions can improve the range of parameter settings within which Guided Local Search performs well. Finally, we compare the results of running our extended GLS with some state of the art algorithms for the QAP.

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